Design of Event Management System for Smart Retail Stores with IoT Edge
|International Journal of Engineering Trends and Technology (IJETT)||
|© 2020 by IJETT Journal|
|Year of Publication : 2020|
|Authors : RR Karthikeyan, Dr. B. Raghu
|DOI : 10.14445/22315381/IJETT-V68I11P210|
MLA Style: RR Karthikeyan, Dr. B. Raghu "Design of Event Management System for Smart Retail Stores with IoT Edge" International Journal of Engineering Trends and Technology 68.11(2020):81-88.
APA Style:RR Karthikeyan, Dr. B. Raghu. Design of Event Management System for Smart Retail Stores with IoT Edge International Journal of Engineering Trends and Technology, 68(11),81-88.
Handling the emergency events from the HVAC and Refrigeration system of the retail store is critical to avoid the food wastage, repair free cold storage, and maintain a comfortable shopping environment so the customer can spend more time and purchase more products. The refrigeration system keeps the food in good condition to avoid wastage before it expires. Proper lighting and air-conditioning provide a better shopping experience.
IoT Solutions are providing a real-time connected experience by interconnecting the machines, assets, and services. Retail stores can improve business profits, reduce food wastage, and increase the life of refrigeration and HVAC systems by doing predictive analysis from the sensor data. Sensors are attached to those assets to read the temperature, pressure, and setpoints.
Design of IoT Edge informed decision-making system for the retail store is explained, the Data Collector Module extracts the sensor Data (readings) from retail stores in Immediately. Automated work orders are created to assign the responsible team`s issues to take care of in a specific time based on the severity.
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Smart retail stores; IoT Edge; Building Management System; Event Management system